模型检验随机供应链

Li Tan, Shenghan Xu
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引用次数: 5

摘要

供应链[2,6]是企业运营的重要组成部分。了解其随机行为是供应链设计与管理中风险分析和绩效评价的关键。我们提出了一个新的计算框架来建模和分析供应链的随机行为。该框架基于概率模型检验,这是一种用于分析随机系统的形式化验证技术。我们的方法是双重的:首先,我们开发了随机商品流模型(SMF),这是一个基于扩展马尔可夫决策过程(EMDP)的随机供应链建模的正式框架;其次,我们提出了一种基于模型检查的形式化技术来自动分析随机供应链。我们基于模型检查的方法利用了符号概率模型检查的最新进展,以提高决策过程的效率和可扩展性。利用时间逻辑PCTL[1]和符号概率模型检查器PRISM[4],我们能够表达和检查供应链上复杂的时间和随机特性。最后,我们通过将基于模型检查的方法应用于各种随机供应链模型来证明其能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model check stochastic supply chains
Supply chain [2, 6] is an important component of business operations. Understanding its stochastic behaviors is the key to risk analysis and performance evaluation in supply chain design and management. We propose a novel computational framework for modeling and analyzing the stochastic behaviors of a supply chain. The framework is based on probabilistic model checking, a formal verification technique for analyzing stochastic systems. Our approach is two-fold: first, we develop Stochastic Merchandise Flow Model (SMF), a formal framework for modeling stochastic supply chains based on Extended Markov Decision Process (EMDP); second, we propose a model-checking-based formal technique to automate the analysis of a stochastic supply chain. Our model-checking-based approach leverages benefits of recent advances in symbolic probabilistic model checking to improve the efficiency and scalability of decision procedures. Using the temporal logic PCTL [1] and the symbolic probabilistic model checker PRISM [4], we are able to express and check complicate temporal and stochastic properties on supply chains. Finally, we demonstrate the capability of our model-checking-based approach by applying it to a variety of stochastic supply chain models.
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